declaration of conflict of interest or relationship
DESCRIPTION
ISMRM 2011 E-Poster #4643. mcDESPOT-Derived MWF Improves EDSS Prediction in MS Patients Compared to Atrophy Measures Alone. J. Su 1 , H.H.Kitzler 2 , M. Zeineh 1 , S.C .Deoni 3 , C.Harper-Little 2 , A.Leung 2 , M.Kremenchutzky 2 , and B.K .Rutt 1 - PowerPoint PPT PresentationTRANSCRIPT
Declaration of Conflict of Interest or RelationshipI have no conflicts of interest to disclose with regard to the subject matter of this presentation.
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEJ.Su1, H.H.Kitzler2, M.Zeineh1, S.C.Deoni3, C.Harper-Little2, A.Leung2, M.Kremenchutzky2, and B.K.Rutt1
1Stanford U, CA, USA, 2TU Dresden, SN, Germany, 2U of Western Ontario, ON, Canada, 3Brown U, RI, USA
ISMRM 2011 E-POSTER #4643
Background
• Conventional MRI measures such as lesion load have been criticized with adding little new information on top of clinical scores for multiple sclerosis (MS) patients
• Measures that quantify the hidden burden of disease in white matter are urgently needed
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Purpose
• To apply mcDESPOT, a whole-brain, myelin-selective, multi-component relaxometric imaging method, in a pilot MS study
• Assess if the method can explain differences in disease course and severity by uncovering the burden of disease in normal-appearing white matter (NAWM)
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Study
Demographic Data Healthy Controls
All Patients CIS RRMS SPMS PPMS
N 26 26 10 5 6 5
Mean age, yr(SD)
42(13)
49(12)
41(12)
48(12)
58(7)
55(7)
Male/Female ratio 10/16 7/19 3/7 0/5 0/6 4/1
Mean disease duration, yr(SD)
—14
(13)2
(2)15
(10)28(8)
20(12)
Mean EDSS score(SD) —
3.6(2.4)
1.7(0.9)
2.0(1.7)
6.4(1.1)
5.6(1.1)
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Scanning Methods• 1.5T GE Signa HDx, 8-channel head RF coil
• mcDESPOT: 2mm3 isotropic covering whole brain, about 15 min.– SPGR: TE/TR = 2.1/6.7ms, α = {3,4,5,6,7,8,11,13,18}°– bSSFP: TE/TR = 1.8/3.6ms, α = {11,14,20,24,28,34,41,51,67}°
• 2D T2 FLAIR: 0.86 mm2 in-plane and 3mm slice resolution
• 3D T1 IR-SPGR: 1mm3 resolution with pre/post Gd contrast
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
The Technique
Processing Methods: MWF
• Linearly coregister and brain extract mcDESPOT SPGR and SSFP images with FSL1
• Find myelin water fraction maps using the established mcDESPOT fitting algorithm2
Myelin Water Fraction
1FMRIB Software Library. 2Deoni et al., Magn Reson Med. 2008 Dec;60(6):1372-87
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
mcDESPOT Maps in NormalT1single T1fast MWF
T2single T2slow
T1slow
T2fast Residence Time
0 – 0.234
0 – 137ms
0 – 555ms
0 – 9.26ms
0 – 1172ms
0 – 123ms
0 – 2345ms
0 – 328ms
Processing Methods: Demyelination
• Non-linearly register mcDESPOT MWF maps to MNI152 standard space
• Combine normals together to form mean and standard deviation MWF volumes
• For each subject, calculate a z-score ([x – μ]/σ) at every voxel to determine if it is significantly demyelinated, i.e. MWF < -4σ below the mean
Demyelinated Voxels
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Processing Methods: WM• Brain extract MPRAGE images
• Segment white and gray matter with SPM83
• Filter tissue masks to reduce noise then manually edit by a trained neuroradiologist
• Calculate parenchymal volume fraction (PVF) as WM+GM divided by the brain mask volume
FLAIR WM
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
3Statistical Parametric Mapping software package.
Processing Methods: Lesions & DAWM
• Non-linearly register T2-FLAIR images to MNI152 standard space
• Combine normals together to form mean and standard deviation volumes
• Segment lesions as those voxels with z-score > +4 and diffusely abnormal white matter > +2
• Edit masks by a trained neurologist
DAWM Lesions
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Processing Methods: NAWM & DVF• Segment normal-appearing
white matter (NAWM) as WM – DAWM – lesions
• Find demyelinated volume fraction (DVF)– Sum the volume of demyelinated
voxels in each tissue compartment and normalize by the compartment’s volume
– # demy. voxels in compartment * voxel volume / compartment volume
Normal-AppearingWhite Matter
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Segmentations and DVFLAIR NAWM DAWM Lesions
MWF DemyelinatedVoxels
WM
DV in NAWM DV in DAWM DV in Lesions
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Statistical Methods• Use rank sum tests to compare patient groups to normals along
different measures
• Perform an exhaustive search to find the best multiple linear regression model for EDSS using Mallows’ Cp4 criterion among 21 possible image-derived predictors:– PVF– log-DVF in whole brain, log-DVF in WM, log-DVF in NAWM, log-DVF in lesions– log-DV in those four compartments– mean MWF in those four compartments– volumes of those four compartments (lesion volume = T2 lesion load)– volume fractions of those four compartments with respect to the whole
brain mask volume
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
4Mallows C. Some comments on Cp. Technometrics. 1973;15(4):661-75.
Results: Mean MWF in Compartments
• Dotted line shows mean MWF in WM for normals. Rank sum testing was done for each bar against this
• Testing was also done for RRMS vs. SPMS and CIS vs. RRMS, any significant differences are shown with a connecting bracket
• Significance levels:* p < 0.05** p < 0.01*** p < 0.001.
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Results: DVF in Compartments• Dotted line shows
demyelinated volume fraction in WM for healthy controls
• With DVF, all patient subclasses were significantly different from healthy controls
• PVF, however, fails to distinguish CIS and RR patients from normals
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Results: Correlations with EDSS• Lesion load correlates
poorly with EDSS
• PVF and DVF are stronger indicators of decline
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Results: Multiple Linear Regression
• The best linear model for EDSS contains PVF (p < 0.001), mean MWF in whole brain (p < 0.001), and WM volume fraction (p < 0.01)
• Whole-brain MWF and WM volume fraction significantly improve the prediction of EDSS over that produced by PVF alone
• Explains 76% of the variance in EDSS (R2 = 0.76, adjusted R2 = 0.73) compared to 56% with only PVF
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Discussion & Conclusions• DVF is able to differentiate CIS and RRMS patients from
normals, whereas other measures such as PVF and mean MWF cannot
• The invisible burden of disease may be more important than lesions in determining disability, since we observe a higher correlation of EDSS with DVF in NAWM than lesion load
• A combination of established atrophy measures with new mcDESPOT-derived MWF are more capable in accurately estimating disability than either quantity alone
MCDESPOT-DERIVED MWF IMPROVES EDSS PREDICTION IN MS PATIENTS COMPARED TO ATROPHY MEASURES ALONEISMRM 2011 #4643
Declaration of Conflict of Interest or RelationshipI have no conflicts of interest to disclose with regard to the subject matter of this presentation.
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT
J.Su1, H.H.Kitzler2, M.Zeineh1, S.C.Deoni3, C.Harper-Little2, A.Leung2, M.Kremenchutzky2, and B.K.Rutt1
1Stanford U, CA, USA, 2TU Dresden, SN, Germany, 2U of Western Ontario, ON, Canada, 3Brown U, RI, USA
ISMRM 2011 E-POSTER #7224
Purpose
• To apply mcDESPOT, a whole-brain, myelin-selective, multi-component relaxometric imaging method, in a 1-year longitudinal pilot MS study
• Assess the ability of the method to sense different rates of demyelination for different MS courses and compare it to changes in EDSS
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Study
Demographic Data Healthy Controls
All Patients CIS RRMS SPMS PPMS
N at baseline 26 26 10 5 6 5
N at 1-year 4 23 9 4 6 4
Mean age at baseline, yr(SD)
42(13)
49(12)
41(12)
48(12)
58(7)
55(7)
Mean disease duration at baseline, yr(SD)
—14
(13)2
(2)15
(10)28(8)
20(12)
Mean EDSS score at baseline(SD)
—3.6
(2.4)1.7
(0.9)2.0
(1.7)6.4
(1.1)5.6
(1.1)
N with EDSS change — 3 1 0 0 2
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Processing Methods: 1-year & DVF
• At 1-year, demyelinated voxels are based on z-scores with respect to the combined baseline and 1-year normal group
• Find demyelinated volume fraction (DVF)– Sum the volume of demyelinated voxels and
normalize by brain mask volume– # demy. voxels in compartment * voxel volume /
compartment volume
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Results: Mean MWF in Whole Brain
• Dotted line shows mean MWF for normals. Rank sum testing was done for each bar against this value
• Testing was also done for RRMS vs. SPMS and CIS vs. RRMS, any significant differences are shown with a connecting bracket
• Significance levels:– * p < 0.05– ** p < 0.01– *** p < 0.001.
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Results: DVF Change• Colors denote subject
type
• Arrowheads indicate the direction of change and the DVF at 1-year
• Dashed lines show subjects who also had a change in EDSS
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Normals
CIS
RRMS
SPMS
PPMS
Results: DVF in Whole Brain• Dotted line shows mean
demyelinated volume fraction change for normals
• Definite MS patients are losing significantly more myelin than normals
• Progressive patients have a greater rate of demyelination
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224
Discussion & Conclusions• The normal pool at 1-year is currently too small to show
significance for the changes in mean MWF
• DVF, however, is sensitive enough to show statistically significant changes in brain myelination over the study period
• Progressive patients show greater disease decline that are not reflected in their EDSS disability score
• EDSS and DVF measure different aspects of the disease. Patients with changes in EDSS did not actually have the largest demyelination changes
SENSITIVE DETECTION OF MYELINATION CHANGE IN MULTIPLE SCLEROSIS BY MCDESPOT ISMRM 2011 #7224